A Quantitative Gibbard-Satterthwaite Theorem Without Neutrality

Abstract

Recently, quantitative versions of the Gibbard-Satterthwaite theorem were proven for k = 3 alternatives by Friedgut, Kalai, Keller and Nisan and for neutral functions on k > or = 4 alternatives by Isaksson, Kindler and Mossel. We prove a quantitative version of the Gibbard-Satterthwaite theorem for general social choice functions for any number k > or = 3 of alternatives. In particular we show that for a social choice function f on k > or = 3 alternatives and n voters, which is epsilon-far from the family of nonmanipulable functions, a uniformly chosen voter profile is manipulable with probability at least inverse polynomial in n, k, and 1/epsilon. Removing the neutrality assumption of previous theorems is important for multiple reasons. For one it is known that there is a conflict between anonymity and neutrality, and since most common voting rules are anonymous, they cannot always be neutral. Second, virtual elections are used in many applications in artificial intelligence, where there are often restrictions on the outcome of the election, and so neutrality is not a natural assumption in these situations. Ours is a unified proof which in particular covers all previous cases established before. The proof crucially uses reverse hypercontractivity in addition to several ideas from the two previous proofs. Much of the work is devoted to understanding functions of a single voter, and in particular we also prove a quantitative Gibbard-Satterthwaite theorem for one voter.

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Document Details

Document Type
Technical Report
Publication Date
May 02, 2014
Accession Number
ADA605331

Entities

People

  • Elchanan Mossel
  • Miklos Racz

Organizations

  • University of California, Berkeley

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  • C4I

DTIC Thesaurus Topics

  • Artificial Intelligence
  • Boundaries
  • Computational Complexity
  • Computations
  • Computer Science
  • Computers
  • Construction
  • Elections
  • Electrical Engineering
  • Engineering
  • Hard Copy
  • Information Operations
  • Language
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  • Notation
  • Polynomials
  • Probability

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  • Mathematics

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  • Educational Psychology
  • Graph Algorithms and Convex Optimization.
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Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Machine Learning Algorithms